在重返工作岗位研究中使用机器学习的范围审查:优势与不足。

IF 2.1 3区 医学 Q1 REHABILITATION
Journal of Occupational Rehabilitation Pub Date : 2024-03-01 Epub Date: 2023-06-28 DOI:10.1007/s10926-023-10127-1
Reuben Escorpizo, Georgios Theotokatos, Carole A Tucker
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引用次数: 0

摘要

目的:要提高重返工作岗位(RTW)的成功率,必须及时做出提高工作参与度的决策。将研究成果应用于临床实践,有赖于复杂而实用的方法,如机器学习(ML)。本研究旨在探索机器学习在职业康复中的应用,并讨论该领域的优势和有待改进之处:我们采用了 PRISMA 准则以及 Arksey 和 O'Malley 框架。我们对 Ovid Medline、CINAHL 和 PsycINFO 进行了检索,并对最终文章进行了手工检索和科学网检索。我们纳入了经过同行评审、在过去 10 年内发表以考虑当代材料、实施了某种形式的 "机器学习 "或 "学习健康系统"、在职业康复环境中进行且以就业为特定结果的研究:结果:分析了 12 项研究。最常见的研究对象是肌肉骨骼损伤或健康状况。大多数研究来自欧洲,且多为回顾性研究。干预措施并不总是有报告或具体说明。ML 被用于识别可预测重返工作的不同工作相关变量。然而,ML 方法多种多样,没有明显的标准或主要 ML 方法:ML 为确定预测重返工作的因素提供了一种潜在的有益方法。虽然 ML 使用了复杂的计算和估算,但 ML 可以高效、及时地补充循证实践的其他要素,如临床医生的专业知识、工人的偏好和价值观以及与复工有关的背景因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Scoping Review on the Use of Machine Learning in Return-to-Work Studies: Strengths and Weaknesses.

A Scoping Review on the Use of Machine Learning in Return-to-Work Studies: Strengths and Weaknesses.

Purpose: Decisions to increase work participation must be informed and timely to improve return to work (RTW). The implementation of research into clinical practice relies on sophisticated yet practical approaches such as machine learning (ML). The objective of this study is to explore the evidence of machine learning in vocational rehabilitation and discuss the strengths and areas for improvement in the field.

Methods: We used the PRISMA guidelines and the Arksey and O'Malley framework. We searched Ovid Medline, CINAHL, and PsycINFO; with hand-searching and use of the Web of Science for the final articles. We included studies that are peer-reviewed, published within the last 10 years to consider contemporary material, implemented a form of "machine learning" or "learning health system", undertaken in a vocational rehabilitation setting, and has employment as a specific outcome.

Results: 12 studies were analyzed. The most commonly studied population was musculoskeletal injuries or health conditions. Most of the studies came from Europe and most were retrospective studies. The interventions were not always reported or specified. ML was used to identify different work-related variables that were predictive of return to work. However, ML approaches were varied and no standard or predominant ML approach was evident.

Conclusions: ML offers a potentially beneficial approach to identifying predictors of RTW. While ML uses a complex calculation and estimation, ML complements other elements of evidence-based practice such as the clinician's expertise, the worker's preference and values, and contextual factors around RTW in an efficient and timely manner.

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来源期刊
CiteScore
5.80
自引率
12.10%
发文量
64
期刊介绍: The Journal of Occupational Rehabilitation is an international forum for the publication of peer-reviewed original papers on the rehabilitation, reintegration, and prevention of disability in workers. The journal offers investigations involving original data collection and research synthesis (i.e., scoping reviews, systematic reviews, and meta-analyses). Papers derive from a broad array of fields including rehabilitation medicine, physical and occupational therapy, health psychology and psychiatry, orthopedics, oncology, occupational and insurance medicine, neurology, social work, ergonomics, biomedical engineering, health economics, rehabilitation engineering, business administration and management, and law.  A single interdisciplinary source for information on work disability rehabilitation, the Journal of Occupational Rehabilitation helps to advance the scientific understanding, management, and prevention of work disability.
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